Open Source Power Quality Meter with cloud monitoring

Cathal Ferry, J. Connolly
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引用次数: 1

Abstract

Energy saving and energy conservation are fast becoming key ideologies in the construction and creation of modern data centres and IT infrastructure. This applies to large scale deployments and on smaller to more intermediate scale sites. Data centres consume large quantities of energy and contribute to carbon dioxide (CO2) emissions. Reducing CO2output using methods such as sustainable power generation and better energy efficiency can help mitigate against the effects of global warming. This paper proposes methods of saving energy in IT equipment by monitoring key power statistics such as power factor to determine the efficiency of the power being used by network equipment. This is achieved using an open-source power factor meter which is not only low cost but also accurate. The meter measures power factor as well as true power, apparent power, reactive power, mains voltage, current, and mains frequency to determine the energy efficiency of the installation or equipment. Readings are measured using three primary sensors; a current transformer, voltage transformer, and a mains frequency sensor. The system is designed for use with single-phase systems and incorporates a local HMI and a cloud-based CMS system. All of the software and hardware elements used are open source and therefore low cost.
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开源电能质量计与云监控
节能和节约能源正迅速成为建设和创建现代数据中心和信息技术基础设施的关键思想。这既适用于大规模部署,也适用于较小规模到中等规模的站点。数据中心消耗大量能源,并导致二氧化碳(CO2)排放。使用可持续发电和提高能源效率等方法减少二氧化碳排放量有助于缓解全球变暖的影响。本文提出了通过监控功率因数等关键功率统计数据来确定网络设备用电效率的IT设备节能方法。这是通过使用开源功率因数计实现的,该计不仅成本低,而且精度高。该仪表可测量功率因数以及真功率、视在功率、无功功率、市电电压、电流和市电频率,以确定装置或设备的能效。读数测量使用三个主要传感器;一个电流互感器,电压互感器和一个主频率传感器。该系统设计用于单相系统,并结合了本地HMI和基于云的CMS系统。所有使用的软件和硬件元素都是开源的,因此成本很低。
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